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  • title: Oral: Accelerate Inference of CNNs for Video Analysis While Preserving Exactness Exploiting Activation Sparsity
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            Oral: Accelerate Inference of CNNs for Video Analysis While Preserving Exactness Exploiting Activation Sparsity
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            Oral: Accelerate Inference of CNNs for Video Analysis While Preserving Exactness Exploiting Activation Sparsity

            Apr 4, 2021

            Sprecher:innen

            TW

            Toshiaki Wakatsuki

            Speaker · 0 followers

            SK

            Sekitoshi Kanai

            Speaker · 0 followers

            YF

            Yasuhiro Fujiwara

            Speaker · 0 followers

            Über

            This paper proposes a range-bound-aware convolution layer that accelerates the inference of rectified linear unit (ReLU)-based convolutional neural networks (CNNs) for analyzing video streams. Since video analysis systems require to process each video frame in real-time, the computational cost of inference of CNNs must be reduced. Several techniques heuristically skip the computation for the current frame and reuse the results of the previous frame when the current and previous frames are suffic…

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            MLSys 2021

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            AI & Data Science

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